Title of article :
Prediction of metadynamic softening in a multi-pass hot deformed
low alloy steel using artificial neural network
Author/Authors :
Y. C. LIN، نويسنده , , Xiaoling Fang، نويسنده , , Y. P. Wang، نويسنده ,
Issue Information :
دوهفته نامه با شماره پیاپی سال 2008
Abstract :
Themetadynamic softening behaviors in 42CrMo
steel were investigated by isothermal interrupted hot compression
tests. Based on the experimental results, an efficient
artificial neural network (ANN) model was developed to
predict the flow stress and metadynamic softening fractions.
The effects of deformation parameters on metadynamic
softening behaviors in the hot deformed 42CrMo steel have
been investigated by the experimental and predicted results
from the developedANNmodel. Results show that the effects
of deformation parameters, such as strain rate and deformation
temperature, on the softening fractions of metadynamic
recrystallization are significant. However, the strain (beyond
the peak strain) has little influence. A very good correlation
between experimental and predicted results indicates that the
excellent capability of the developed ANN model to predict
the flow stress level and metadynamic softening, the metadynamic
recrystallization behaviors were well evidenced
Journal title :
Journal of Materials Science
Journal title :
Journal of Materials Science